International audienceIn this paper, we propose a stratified sampling algorithm in which the random drawings made in the strata to compute the expectation of interest are also used to adaptively modify the proportion of further drawings in each stratum. These proportions converge to the optimal allocation in terms of variance reduction. And our stratified estimator is asymptotically normal with asymptotic variance equal to the minimal one. Numerical experiments confirm the efficiency of our algorithm
We introduce adaptive sampling methods for stochastic programs with deterministic constraints. First...
forthcomingInternational audienceWe consider noisy optimization and some traditional variance reduct...
In stratified random sampling when several characteristics are to be estimated simultaneously, an al...
International audienceIn this paper, we propose a stratified sampling algorithm in which the random ...
International audienceThis paper investigates the use of stratified sampling as a variance reduction...
International audienceAdaptive Monte Carlo methods are recent variance reduction techniques. In this...
International audienceWe consider the problem of stratified sampling for Monte-Carlo integration. We...
the date of receipt and acceptance should be inserted later Abstract This paper investigates the use...
International audienceWe consider the problem of adaptive stratified sampling for Monte Carlo integr...
International audienceAdaptive Monte Carlo methods are very efficient techniques designed to tune si...
In stratified sampling, methods for the allocation of effort among strata usually rely on some measu...
In this thesis, I examine several situations in which one can improve the efficiency of a stochastic...
In this article, we propose several quantization-based stratified sampling methods to reduce the var...
The two main and contradicting criteria guiding sampling design are accuracy of estimators and sampl...
In stratified sampling, the problem of optimally allocating the sample size is of primary importance...
We introduce adaptive sampling methods for stochastic programs with deterministic constraints. First...
forthcomingInternational audienceWe consider noisy optimization and some traditional variance reduct...
In stratified random sampling when several characteristics are to be estimated simultaneously, an al...
International audienceIn this paper, we propose a stratified sampling algorithm in which the random ...
International audienceThis paper investigates the use of stratified sampling as a variance reduction...
International audienceAdaptive Monte Carlo methods are recent variance reduction techniques. In this...
International audienceWe consider the problem of stratified sampling for Monte-Carlo integration. We...
the date of receipt and acceptance should be inserted later Abstract This paper investigates the use...
International audienceWe consider the problem of adaptive stratified sampling for Monte Carlo integr...
International audienceAdaptive Monte Carlo methods are very efficient techniques designed to tune si...
In stratified sampling, methods for the allocation of effort among strata usually rely on some measu...
In this thesis, I examine several situations in which one can improve the efficiency of a stochastic...
In this article, we propose several quantization-based stratified sampling methods to reduce the var...
The two main and contradicting criteria guiding sampling design are accuracy of estimators and sampl...
In stratified sampling, the problem of optimally allocating the sample size is of primary importance...
We introduce adaptive sampling methods for stochastic programs with deterministic constraints. First...
forthcomingInternational audienceWe consider noisy optimization and some traditional variance reduct...
In stratified random sampling when several characteristics are to be estimated simultaneously, an al...